基于支持向量机和多层感知机的糖尿病诊断

Mehmet Kurt, T. Ensari
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引用次数: 2

摘要

糖尿病是一种由遗传和环境因素共同引起的代谢性疾病。它发生在血液水平升高。本研究采用支持向量机(SVM)和人工神经网络(多层感知器)对糖尿病疾病进行分类诊断。诊断方法采用人工神经网络多层感知器。我们使用SVM-Linear、SVM-Polinomial和SVM-Radial模型。我们实验中用到的糖尿病数据集是从UCI网站上获取并整理的。在这项研究中,我们比较了几种诊断发病率的算法。多层感知机的诊断正确预测(准确率)为%77.08,支持向量机为%77.47,多项式核为%55.33,径向核和s型核为%65.10。支持向量机学习方法的识别率最高为77.47 %。
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Diabet diagnosis with support vector machines and multi layer perceptron
Diabet is one of the metabolic trouble which is generally occurs genetic and environmental components. It happens increasing of blood level. In this study, diabet illness has been diagnosed with its features by classification with support vector machines (SVM) and artificial neural networks (multi layer perceptron). The method used for diagnosis is aritificial neural networks multi layer perceptron. We used SVM-Linear, SVM-Polinomial and SVM-Radial models. Diabet data set which will be used in our experiments obtained from UCI web site and organized. In this study, we compared several algorithms to diagnose illness rates. Diagnose right predictions (accuracy) are %77.08 for multi layer perceptron, %77.47 for support vector machines, %55.33 for polynomial kernel, %65.10 for radial based kernel and sigmoid kernel. Maximum recognition rate is %77.47 for SVM learning method.
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